Denoise Pre-training on Non-equilibrium Molecules for Accurate and Transferable Neural Potentials

03/03/2023
by   Yuyang Wang, et al.
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Machine learning methods, particularly recent advances in equivariant graph neural networks (GNNs), have been investigated as surrogate models to expensive ab initio quantum mechanics (QM) approaches for molecular potential predictions. However, building accurate and transferable potential models using GNNs remains challenging, as the quality and quantity of data are greatly limited by QM calculations, especially for large and complex molecular systems. In this work, we propose denoise pre-training on non-equilibrium molecular conformations to achieve more accurate and transferable GNN potential predictions. Specifically, GNNs are pre-trained by predicting the random noises added to atomic coordinates of sampled non-equilibrium conformations. Rigorous experiments on multiple benchmarks reveal that pre-training significantly improves the accuracy of neural potentials. Furthermore, we show that the proposed pre-training approach is model-agnostic, as it improves the performance of different invariant and equivariant GNNs. Notably, our models pre-trained on small molecules demonstrate remarkable transferability, improving performance when fine-tuned on diverse molecular systems, including different elements, charged molecules, biomolecules, and larger systems. These results highlight the potential for leveraging denoise pre-training approaches to build more generalizable neural potentials for complex molecular systems.

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